scholarly journals SVInterpreter: A Comprehensive Topologically Associated Domain-Based Clinical Outcome Prediction Tool for Balanced and Unbalanced Structural Variants

2021 ◽  
Vol 12 ◽  
Author(s):  
Joana Fino ◽  
Bárbara Marques ◽  
Zirui Dong ◽  
Dezső David

With the advent of genomic sequencing, a number of balanced and unbalanced structural variants (SVs) can be detected per individual. Mainly due to incompleteness and the scattered nature of the available annotation data of the human genome, manual interpretation of the SV’s clinical significance is laborious and cumbersome. Since bioinformatic tools developed for this task are limited, a comprehensive tool to assist clinical outcome prediction of SVs is warranted. Herein, we present SVInterpreter, a free Web application, which analyzes both balanced and unbalanced SVs using topologically associated domains (TADs) as genome units. Among others, gene-associated data (as function and dosage sensitivity), phenotype similarity scores, and copy number variants (CNVs) scoring metrics are retrieved for an informed SV interpretation. For evaluation, we retrospectively applied SVInterpreter to 97 balanced (translocations and inversions) and 125 unbalanced (deletions, duplications, and insertions) previously published SVs, and 145 SVs identified from 20 clinical samples. Our results showed the ability of SVInterpreter to support the evaluation of SVs by (1) confirming more than half of the predictions of the original studies, (2) decreasing 40% of the variants of uncertain significance, and (3) indicating several potential position effect events. To our knowledge, SVInterpreter is the most comprehensive TAD-based tool to identify the possible disease-causing candidate genes and to assist prediction of the clinical outcome of SVs. SVInterpreter is available at http://dgrctools-insa.min-saude.pt/cgi-bin/SVInterpreter.py.

PLoS ONE ◽  
2018 ◽  
Vol 13 (11) ◽  
pp. e0207001 ◽  
Author(s):  
Kang-Yi Su ◽  
Jeng-Sen Tseng ◽  
Keng-Mao Liao ◽  
Tsung-Ying Yang ◽  
Kun-Chieh Chen ◽  
...  

2022 ◽  
Vol 123 ◽  
pp. 102230
Author(s):  
Shuchao Pang ◽  
Matthew Field ◽  
Jason Dowling ◽  
Shalini Vinod ◽  
Lois Holloway ◽  
...  

2016 ◽  
Vol 27 (2) ◽  
pp. 336-351 ◽  
Author(s):  
Akram Shalabi ◽  
Masato Inoue ◽  
Johnathan Watkins ◽  
Emanuele De Rinaldis ◽  
Anthony CC Coolen

When data exhibit imbalance between a large number d of covariates and a small number n of samples, clinical outcome prediction is impaired by overfitting and prohibitive computation demands. Here we study two simple Bayesian prediction protocols that can be applied to data of any dimension and any number of outcome classes. Calculating Bayesian integrals and optimal hyperparameters analytically leaves only a small number of numerical integrations, and CPU demands scale as O(nd). We compare their performance on synthetic and genomic data to the mclustDA method of Fraley and Raftery. For small d they perform as well as mclustDA or better. For d = 10,000 or more mclustDA breaks down computationally, while the Bayesian methods remain efficient. This allows us to explore phenomena typical of classification in high-dimensional spaces, such as overfitting and the reduced discriminative effectiveness of signatures compared to intra-class variability.


2015 ◽  
Vol 61 (1) ◽  
pp. 227-242 ◽  
Author(s):  
Arman Rahmim ◽  
C Ross Schmidtlein ◽  
Andrew Jackson ◽  
Sara Sheikhbahaei ◽  
Charles Marcus ◽  
...  

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